ICL-Router: In-Context Learned Model Representations for LLM Routing

arXiv — cs.LGMonday, November 17, 2025 at 5:00:00 AM
  • The paper introduces a new routing method for large language models that leverages in
  • This development is significant as it allows for seamless integration of new models into existing systems without retraining, thus improving scalability and efficiency in deploying LLMs. The ability to predict model performance based on in
  • While there are no directly related articles, the proposed method's focus on improving routing performance and integration aligns with ongoing trends in AI research, emphasizing the need for adaptable and efficient model management strategies in the rapidly evolving landscape of large language models.
— via World Pulse Now AI Editorial System

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